1. Multi-Instance Learning for Vocal Fold Leukoplakia Diagnosis Using White Light and Narrow-Band Imaging: A Multicenter Study.
- Author
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Tie CW, Li DY, Zhu JQ, Wang ML, Wang JH, Chen BH, Li Y, Zhang S, Liu L, Guo L, Yang L, Yang LQ, Wei J, Jiang F, Zhao ZQ, Wang GQ, Zhang W, Zhang QM, and Ni XG
- Subjects
- Humans, Male, Female, Middle Aged, Laryngeal Neoplasms diagnostic imaging, Laryngeal Neoplasms diagnosis, Aged, Laryngoscopy methods, ROC Curve, Precancerous Conditions diagnostic imaging, Precancerous Conditions diagnosis, Precancerous Conditions pathology, Artificial Intelligence, Deep Learning, Video Recording, Adult, Prospective Studies, Diagnosis, Differential, Light, Narrow Band Imaging methods, Vocal Cords diagnostic imaging, Vocal Cords pathology, Leukoplakia diagnostic imaging, Leukoplakia diagnosis, Leukoplakia pathology
- Abstract
Objectives: Vocal fold leukoplakia (VFL) is a precancerous lesion of laryngeal cancer, and its endoscopic diagnosis poses challenges. We aim to develop an artificial intelligence (AI) model using white light imaging (WLI) and narrow-band imaging (NBI) to distinguish benign from malignant VFL., Methods: A total of 7057 images from 426 patients were used for model development and internal validation. Additionally, 1617 images from two other hospitals were used for model external validation. Modeling learning based on WLI and NBI modalities was conducted using deep learning combined with a multi-instance learning approach (MIL). Furthermore, 50 prospectively collected videos were used to evaluate real-time model performance. A human-machine comparison involving 100 patients and 12 laryngologists assessed the real-world effectiveness of the model., Results: The model achieved the highest area under the receiver operating characteristic curve (AUC) values of 0.868 and 0.884 in the internal and external validation sets, respectively. AUC in the video validation set was 0.825 (95% CI: 0.704-0.946). In the human-machine comparison, AI significantly improved AUC and accuracy for all laryngologists (p < 0.05). With the assistance of AI, the diagnostic abilities and consistency of all laryngologists improved., Conclusions: Our multicenter study developed an effective AI model using MIL and fusion of WLI and NBI images for VFL diagnosis, particularly aiding junior laryngologists. However, further optimization and validation are necessary to fully assess its potential impact in clinical settings., Level of Evidence: 3 Laryngoscope, 134:4321-4328, 2024., (© 2024 The American Laryngological, Rhinological and Otological Society, Inc.)
- Published
- 2024
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